"My Grade is Wrong!": A Contestable AI Framework for Interactive Feedback in Evaluating Student Essays

Shengxin Hong, Chang Cai, Sixuan Du, Haiyue Feng, Siyuan Liu, Xiuyi Fan
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Abstract

Interactive feedback, where feedback flows in both directions between teacher and student, is more effective than traditional one-way feedback. However, it is often too time-consuming for widespread use in educational practice. While Large Language Models (LLMs) have potential for automating feedback, they struggle with reasoning and interaction in an interactive setting. This paper introduces CAELF, a Contestable AI Empowered LLM Framework for automating interactive feedback. CAELF allows students to query, challenge, and clarify their feedback by integrating a multi-agent system with computational argumentation. Essays are first assessed by multiple Teaching-Assistant Agents (TA Agents), and then a Teacher Agent aggregates the evaluations through formal reasoning to generate feedback and grades. Students can further engage with the feedback to refine their understanding. A case study on 500 critical thinking essays with user studies demonstrates that CAELF significantly improves interactive feedback, enhancing the reasoning and interaction capabilities of LLMs. This approach offers a promising solution to overcoming the time and resource barriers that have limited the adoption of interactive feedback in educational settings.
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"我的分数错了!":评价学生作文的交互式反馈的可竞争人工智能框架
互动反馈,即教师和学生之间的双向反馈,比传统的单向反馈更有效。然而,在教育实践中广泛使用往往过于耗时。虽然大型语言模型(LLM)在自动反馈方面具有潜力,但它们在交互式环境中的推理和交互方面却举步维艰。本文介绍了 CAELF,一个用于自动交互反馈的可竞争人工智能授权 LLM 框架。CAELF 通过将多代理系统与计算论证整合在一起,允许学生查询、质疑和澄清他们的反馈。论文首先由多个教学助理代理(TA Agents)进行评估,然后由教师代理(Teacher Agent)通过正式推理汇总评估结果,生成反馈和分数。学生可以进一步参与反馈,以完善自己的理解。对500篇批判性思维论文进行的案例研究和用户研究表明,CAELF显著改善了交互式反馈,增强了LLMs的推理和交互能力。这种方法为克服时间和资源障碍提供了一个很有前景的解决方案,而这些障碍限制了交互式反馈在教育环境中的应用。
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